It is often assumed that agents in multiagent systems with state uncertainty have full knowledge of the model of dy- namics and sensors, but in many cases this is not feasible. A more realistic assumption is that agents must learn about the environment and other agents while acting. Bayesian methods for reinforcement learning are promising for this type of learning because they allow model uncertainty to be considered explicitly and offer a principled way of dealing with the exploration/exploitation tradeoff. In this paper, we propose a Bayesian RL framework for best response learn- ing in which an agent has uncertainty over the environment and the policies of the other agents. This is a very general model that can incorporate different ass...
Thesis: S.M., Massachusetts Institute of Technology, Department of Aeronautics and Astronautics, 201...
Bayesian model-based reinforcement learning is a formally elegant approach to learning optimal behav...
Reinforcement Learning has emerged as a useful framework for learning to perform a task optimally fr...
It is often assumed that agents in multiagent systems with state uncertainty have full knowledge of ...
It is often assumed that agents in multiagent systems with state uncertainty have full knowledge of ...
Bayesian methods for reinforcement learning (RL) allow model uncertainty to be considered explicitly...
Bayesian methods for reinforcement learning (BRL) allow model uncertainty to be considered explicitl...
Bayesian methods for reinforcement learning (BRL) allow model uncertainty to be considered explicitl...
Solving complex but structured problems in a decentralized manner via multiagent collaboration has r...
For autonomous robots, we propose an approximate model-based Bayesian reinforcement learning (MB-BRL...
Solving complex but structured problems in a decentralized manner via multiagent collaboration has r...
Bayesian reinforcement learning (RL) offers a principled and elegant approach for sequential decisio...
Thesis (Ph.D.)--University of Washington, 2020Informed and robust decision making in the face of unc...
Reinforcement learning systems are often concerned with balancing exploration of untested actions ag...
Multi-agent systems draw together a number of significant trends in modern technology: ubiquity, dec...
Thesis: S.M., Massachusetts Institute of Technology, Department of Aeronautics and Astronautics, 201...
Bayesian model-based reinforcement learning is a formally elegant approach to learning optimal behav...
Reinforcement Learning has emerged as a useful framework for learning to perform a task optimally fr...
It is often assumed that agents in multiagent systems with state uncertainty have full knowledge of ...
It is often assumed that agents in multiagent systems with state uncertainty have full knowledge of ...
Bayesian methods for reinforcement learning (RL) allow model uncertainty to be considered explicitly...
Bayesian methods for reinforcement learning (BRL) allow model uncertainty to be considered explicitl...
Bayesian methods for reinforcement learning (BRL) allow model uncertainty to be considered explicitl...
Solving complex but structured problems in a decentralized manner via multiagent collaboration has r...
For autonomous robots, we propose an approximate model-based Bayesian reinforcement learning (MB-BRL...
Solving complex but structured problems in a decentralized manner via multiagent collaboration has r...
Bayesian reinforcement learning (RL) offers a principled and elegant approach for sequential decisio...
Thesis (Ph.D.)--University of Washington, 2020Informed and robust decision making in the face of unc...
Reinforcement learning systems are often concerned with balancing exploration of untested actions ag...
Multi-agent systems draw together a number of significant trends in modern technology: ubiquity, dec...
Thesis: S.M., Massachusetts Institute of Technology, Department of Aeronautics and Astronautics, 201...
Bayesian model-based reinforcement learning is a formally elegant approach to learning optimal behav...
Reinforcement Learning has emerged as a useful framework for learning to perform a task optimally fr...